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减少抑郁症治疗中的脱落率:将脱落预测因素转化为个性化治疗建议。

Reducing Dropout in Treatment for Depression: Translating Dropout Predictors Into Individualized Treatment Recommendations.

作者信息

Zilcha-Mano Sigal, Keefe John R, Chui Harold, Rubin Avinadav, Barrett Marna S, Barber Jacques P

机构信息

Department of Psychology, University of Haifa, Mount Carmel, Haifa 31905, Israel.

Department of Psychology, University of Haifa, Haifa, Israel.

出版信息

J Clin Psychiatry. 2016 Dec;77(12):e1584-e1590. doi: 10.4088/JCP.15m10081.

Abstract

OBJECTIVE

Premature discontinuation of therapy is a widespread problem that hampers the delivery of mental health treatment. A high degree of variability has been found among rates of premature treatment discontinuation, suggesting that rates may differ depending on potential moderators. In the current study, our aim was to identify demographic and interpersonal variables that moderate the association between treatment assignment and dropout.

METHODS

Data from a randomized controlled trial conducted from November 2001 through June 2007 (N = 156) comparing supportive-expressive therapy, antidepressant medication, and placebo for the treatment of depression (based on DSM-IV criteria) were used. Twenty prerandomization variables were chosen based on previous literature. These variables were subjected to exploratory bootstrapped variable selection and included in the logistic regression models if they passed variable selection.

RESULTS

Three variables were found to moderate the association between treatment assignment and dropout: age, pretreatment therapeutic alliance expectations, and the presence of vindictive tendencies in interpersonal relationships. When patients were divided into those randomly assigned to their optimal treatment and those assigned to their least optimal treatment, dropout rates in the optimal treatment group (24.4%) were significantly lower than those in the least optimal treatment group (47.4%; P = .03).

CONCLUSIONS

Present findings suggest that a patient's age and pretreatment interpersonal characteristics predict the association between common depression treatments and dropout rate. If validated by further studies, these characteristics can assist in reducing dropout through targeted treatment assignment.

TRIAL REGISTRATION

Secondary analysis of data from ClinicalTrials.gov identifier: NCT00043550.

摘要

目的

治疗过早中断是一个普遍存在的问题,阻碍了心理健康治疗的实施。已发现过早治疗中断率存在高度变异性,这表明中断率可能因潜在的调节因素而异。在本研究中,我们的目的是确定调节治疗分配与退出之间关联的人口统计学和人际变量。

方法

使用了2001年11月至2007年6月进行的一项随机对照试验(N = 156)的数据,该试验比较了支持性表达疗法、抗抑郁药物和安慰剂治疗抑郁症(基于DSM-IV标准)的效果。根据以往文献选择了20个随机分组前的变量。对这些变量进行探索性自抽样变量选择,如果它们通过变量选择,则纳入逻辑回归模型。

结果

发现三个变量调节治疗分配与退出之间的关联:年龄、治疗前对治疗联盟的期望以及人际关系中报复倾向的存在。当患者被分为随机分配到最佳治疗组和分配到最不理想治疗组时,最佳治疗组的退出率(24.4%)显著低于最不理想治疗组(47.4%;P = 0.03)。

结论

目前的研究结果表明,患者的年龄和治疗前的人际特征可预测常见抑郁症治疗与退出率之间的关联。如果经进一步研究验证,这些特征可通过有针对性的治疗分配帮助减少退出。

试验注册

ClinicalTrials.gov标识符数据的二次分析:NCT00043550。

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